2021
DOI: 10.1007/s13278-021-00767-7
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Identifying Covid-19 misinformation tweets and learning their spatio-temporal topic dynamics using Nonnegative Coupled Matrix Tensor Factorization

Abstract: Social media platforms like Twitter have become an easy portal for billions of people to connect and exchange their thoughts. Unfortunately, people commonly use these platforms to share misinformation which can influence other people adversely. The spread of misinformation is unavoidable in an extraordinary situation like Covid-19, and the consequences can be dreadful. This paper proposes a two-step ranking-based misinformation detection (RMiD) technique. Firstly, a novel ranking-based approach leveraging the … Show more

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Cited by 18 publications
(9 citation statements)
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References 58 publications
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“…72 [123] A Taxonomy of Fake News Classification Techniques: Survey and Implementation Aspects 73 [124] The Impact of the COVID- [134] Public perception of SARS-CoV-2 vaccinations on social media: Questionnaire and sentiment analysis 84 [135] Identifying Covid-19 misinformation tweets and learning their spatio-temporal topic dynamics using Nonnegative Coupled Matrix Tensor Factorization 85 [136] Cultural Evolution and Digital Media: Diffusion of Fake News About COVID-19 on Twitter 86 [137] Covid-19 vaccine hesitancy on social media: Building a public twitter data set of antivaccine content, vaccine misinformation, and conspiracies 87 [138] News media stories about cancer on Facebook: How does story framing influence response framing, tone and attributions of responsibility?…”
Section: [72]mentioning
confidence: 99%
“…72 [123] A Taxonomy of Fake News Classification Techniques: Survey and Implementation Aspects 73 [124] The Impact of the COVID- [134] Public perception of SARS-CoV-2 vaccinations on social media: Questionnaire and sentiment analysis 84 [135] Identifying Covid-19 misinformation tweets and learning their spatio-temporal topic dynamics using Nonnegative Coupled Matrix Tensor Factorization 85 [136] Cultural Evolution and Digital Media: Diffusion of Fake News About COVID-19 on Twitter 86 [137] Covid-19 vaccine hesitancy on social media: Building a public twitter data set of antivaccine content, vaccine misinformation, and conspiracies 87 [138] News media stories about cancer on Facebook: How does story framing influence response framing, tone and attributions of responsibility?…”
Section: [72]mentioning
confidence: 99%
“…Shallow or deep learning-based methods for detecting deceptive posts can be used, with at least two training and testing steps. These methods aim to build a binary classification that uses a variety of characteristics and auxiliary qualities during the training process to evaluate whether a post is deceptive or not [53] . To categorise social media information, several natural language processing approaches were applied.…”
Section: Related Workmentioning
confidence: 99%
“…Recently, authors used a tensor factorization method to identify misinformation in COVID19 tweets and display their spatio-temporal distribution Balasubramaniam et al. ( 2021 , 2020 ) and sentiment analysis Singh et al. ( 2021 ).…”
Section: Introductionmentioning
confidence: 99%